基于机器学习和Morlet小波的BCI应用的P300信号特征选择

N. Haddad, M. Derkach, A. Dmitriev, I. Sergeev, S. Shchukin
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摘要

脑机接口是一项很有前途的技术,在某些特殊情况下,它使患有运动疾病的人能够仅使用脑电图等大脑信号直接控制计算机或任何外部设备。在用于设计基于脑电图的脑机接口的多种脑电图模式中,P300被认为是精细运动康复最常见的选择之一。高效的P300检测对于评估脑机接口的准确性和可靠性至关重要,近年来,机器学习方法被广泛用作P300的分类器。使用这些方法的分类质量很大程度上取决于输入特征。本工作旨在研究视觉刺激的参数,以及P300的特性,从而提高P300- bci系统对目标刺激检测的准确性。将目标-非目标刺激与小波Morlet的相关性分析,根据刺激频率进行数据分割比较,并结合每个实验中使用的刺激参数,找出基于P300的哪些刺激参数更适合脑机接口。利用人工神经网络对P300的各种特征进行比较分析,以获得更具分析性和一致性的结论。在考虑了许多其他方法,如支持向量机、线性判别分析和随机森林之后,我们决定在工作中使用人工神经网络。使用相关函数作为P300特征,可以显著提高分类精度。研究发现,小波参数应针对每个参与者单独选取。然而,小波参数与刺激频率之间没有直接关系。考虑到每个患者的小波Morlet的单个参数,并使用相关函数作为P300特征,可以显著提高目标刺激的分类精度。此外,在实验过程中选择最合适的范式也很重要,这将提高数据质量,从而提高脑机接口的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of P300 signal features based on machine learning and the Morlet wavelet use for BCI applications
Brain-computer interface is a promising technology that gives humans with a motor disease in some particular cases the ability to directly control computers or any external devices using only brain signals such as EEG. Among a variety of EEG patterns that were used to design EEG-based BCI, P300 is considered as one of the most common options for fine motor rehabilitation. Efficient P300 detection is essential due to its crucial role in evaluating the accuracy and reliability of brain-computer interfaces, in the last few years, Machine learning methods have been widely used as classifiers for P300. Where the quality of the classification using these methods significantly depends on the input features. This work aims to study the parameters of visual stimulation, as well as the characteristics of the P300, which would lead to an increase in the accuracy of the target stimulus detection for the P300-BCI system. Correlation analysis between target – non-target stimuli and wavelet Morlet has been done after splitting the data according to the stimulation frequency for comparisons, taking into account the stimulation parameters that were used in each experiment to find out which stimulation parameters are more suitable for brain-computer interface based on P300. A comparative analysis of various features of the P300 using artificial neural networks has been considered to achieve more analytical and consistent conclusions. The use of ANN in our work has been decided after considering many other methods like support vector machine, linear discriminant analysis, and Random forest. A significant improvement in the classification accuracy was achieved using the correlation function as a P300 feature. It was found that the wavelet parameters should be selected individually for each participant. However, no direct relationship was found between the wavelet parameters and the stimulation frequency. Taking into account the individual parameters of the wavelet Morlet for each patient, and using the correlation function as a P300 feature, allows achieving a significant increase in the classification accuracy of the target stimulus. In addition to the importance of choosing the most appropriate paradigm during the experiment, which would increase the quality of data and thus improve BCI performance.
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